Speaker Recognition Using DWT- MFCC with Multi-SVM Classifier
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چکیده
This paper describes a hybrid technique for speaker recognition. Speaker recognition is that the method of identifying the person based on characteristics like pitch, tone, Cepstral coefficients in the speech wave. Here DWT and MFCC technique is employed for feature extraction. A mix of two or lot of techniques is named hybrid technique. DWT means divide the speech signal completely into different frequency bands. Multi_ class SVM is used for classification. Keywords— Feature Extraction; DWT; Mel frequency; MFCC; Multi_ class SVM.
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